Brain Tumor Detection by using Artificial Neural Network

Hussna Elnoor Mohammed Abdalla, M. Esmail
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引用次数: 43

Abstract

Brain tumor is one of the most dangerous diseases which require early and accurately detection methods, now most detection and diagnosis methods depend on decision of neurospecialists, and radiologist for image evaluation which possible to human errors and time consuming. This study reviews and describe the processes and techniques used in detection brain tumor based on magnetic resonance imaging (MRI) and artificial neural networks (ANN) techniques, Which executed in the different steps of Computer Aided Detection System (CAD) after collected the image data (MRI); first stage is pre-processing and post-processing of MRI images to enhancement it and make it more suitable to analysis then used threshold to segment the MRI images by applied mean gray level method. In the second stage was used the statistical feature analysis to extract features from images; the features computed from equations of Haralick’s features based on the spatial gray level dependency matrix (SGLD) of images. Then selected the suitable and best features to detect the tumor localization. In the third stage the artificial neural networks were designed; the feedforward back propagation neural network with supervised learning were apply as automatic method to classify the images under investigation into tumor or none tumor. the network performances was evaluated successfully tested and achieved the best results with accuracy of 99%, and sensitivity 97.9%.
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基于人工神经网络的脑肿瘤检测
脑肿瘤是最危险的疾病之一,需要早期和准确的检测方法,目前大多数检测和诊断方法依赖于神经专家的决策,以及放射科医生的图像评估,这可能会造成人为错误和耗时。本文综述和描述了基于磁共振成像(MRI)和人工神经网络(ANN)技术的脑肿瘤检测过程和技术,这些过程和技术在收集图像数据(MRI)后在计算机辅助检测系统(CAD)的不同步骤中执行;首先对MRI图像进行预处理和后处理,增强图像,使其更适合分析,然后应用均值灰度法对MRI图像进行阈值分割。第二阶段采用统计特征分析对图像进行特征提取;基于图像的空间灰度依赖矩阵(SGLD),由Haralick特征方程计算特征。然后选择最合适的特征进行肿瘤定位检测。第三阶段设计了人工神经网络;采用带监督学习的前馈反传播神经网络作为自动分类方法,对研究图像进行肿瘤和非肿瘤分类。测试结果表明,该网络的准确率为99%,灵敏度为97.9%。
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